Online Tuning for Offline Decentralized Multi-Agent Reinforcement Learning

Jiechuan Jiang, Zongqing Lu
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引用次数: 1

Abstract

Offline reinforcement learning could learn effective policies from a fixed dataset, which is promising for real-world applications. However, in offline decentralized multi-agent reinforcement learning, due to the discrepancy between the behavior policy and learned policy, the transition dynamics in offline experiences do not accord with the transition dynamics in online execution, which creates severe errors in value estimates, leading to uncoordinated low-performing policies. One way to overcome this problem is to bridge offline training and online tuning. However, considering both deployment efficiency and sample efficiency, we could only collect very limited online experiences, making it insufficient to use merely online data for updating the agent policy. To utilize both offline and online experiences to tune the policies of agents, we introduce online transition correction (OTC) to implicitly correct the offline transition dynamics by modifying sampling probabilities. We design two types of distances, i.e., embedding-based and value-based distance, to measure the similarity between transitions, and further propose an adaptive rank-based prioritization to sample transitions according to the transition similarity. OTC is simple yet effective to increase data efficiency and improve agent policies in online tuning. Empirically, OTC outperforms baselines in a variety of tasks.
离线分散多智能体强化学习的在线调优
离线强化学习可以从固定的数据集中学习有效的策略,这对于现实世界的应用很有希望。然而,在离线去中心化多智能体强化学习中,由于行为策略与学习到的策略之间存在差异,导致离线体验中的过渡动态与在线执行中的过渡动态不一致,从而产生严重的价值估计误差,导致策略不协调、低绩效。克服这个问题的一种方法是将离线培训和在线调优结合起来。然而,考虑到部署效率和样本效率,我们只能收集非常有限的在线体验,因此仅使用在线数据来更新代理策略是不够的。为了利用离线和在线体验来调整代理的策略,我们引入了在线转换校正(OTC),通过修改采样概率来隐式地纠正离线转换动态。我们设计了基于嵌入的距离和基于值的距离两种类型的距离来衡量过渡之间的相似度,并根据过渡相似度提出了一种基于自适应排序的样本过渡优先级。OTC在在线调优中提高数据效率和改进代理策略方面简单有效。根据经验,OTC在各种任务中都优于基线。
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